MANOJAVAM unifies matrix multiplication and SVD for PCA on FPGA with block-streaming systolic arrays and pipelined Jacobi-CORDIC, delivering up to 22.75x SVD speedup and 42.14x lower energy than an NVIDIA A6000 GPU.
Principal component analysis
2 Pith papers cite this work. Polarity classification is still indexing.
years
2026 2verdicts
UNVERDICTED 2representative citing papers
A data-driven pipeline reduces EIS measurements by 99% and achieves 80% accuracy with AUC 0.90 for healthy vs. cancer classification plus AUCs above 0.82 in multi-class oral lesion tasks using leave-one-patient-group-out validation.
citing papers explorer
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MANOJAVAM: A Scalable, Unified FPGA Accelerator for Matrix Multiplication and Singular Value Decomposition in Principal Component Analysis
MANOJAVAM unifies matrix multiplication and SVD for PCA on FPGA with block-streaming systolic arrays and pipelined Jacobi-CORDIC, delivering up to 22.75x SVD speedup and 42.14x lower energy than an NVIDIA A6000 GPU.
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Optimizing In Vivo Oral Lesion Classification from Electrical Impedance Spectroscopy Using Data-driven Approaches
A data-driven pipeline reduces EIS measurements by 99% and achieves 80% accuracy with AUC 0.90 for healthy vs. cancer classification plus AUCs above 0.82 in multi-class oral lesion tasks using leave-one-patient-group-out validation.